Department of Climate Change & Agricultural Meteorology, PAU, Ludhiana, India.
Regional Research Station, Gurdaspur, India.
Int J Biometeorol. 2024 Sep;68(9):1799-1810. doi: 10.1007/s00484-024-02707-4. Epub 2024 May 28.
Timely prediction of pathogen is important key factor to reduce the quality and yield losses. Wheat is major crop in northern part of India. In Punjab, wheat face challenge by different diseases so the study was conducted for two locations viz. Ludhiana and Bathinda. The information regarding the occurrence of Karnal bunt in 12 consecutive crop seasons (from 2009-10 to 2020-21) in Ludhiana district and in 9 crop seasons (from 2010-11 to 2018-19) in Bathinda district, was collected from the Wheat Section of the Department of Plant Breeding and Genetics at Punjab Agricultural University (PAU), located in Ludhiana. The study aims to investigate the adequacy of various methods of machine learning for prediction of Karnal bunt using meteorological data for different time period viz. February, March, 15 February to 15 March and overall period obtained from Department of Climate Change and Agricultural Meteorology, PAU, Ludhiana. The most intriguing outcome is that for each period, different disease prediction models performed well. The random forest regression (RF) for February month, support vector regression (SVR) for March month, SVR and BLASSO for 15 February to 15 March period and random forest for overall period surpassed the performance than other models. The Taylor diagram was created to assess the effectiveness of intricate models by comparing various metrics such as root mean square error (RMSE), root relative square error (RRSE), correlation coefficient (r), relative mean absolute error (MAE), modified D-index, and modified NSE. It allows for a comprehensive evaluation of these models' performance.
及时预测病原体是减少质量和产量损失的重要关键因素。小麦是印度北部的主要作物。在旁遮普邦,小麦面临着各种疾病的挑战,因此在两个地点Ludhiana 和 Bathinda 进行了这项研究。在 Ludhiana 区,从 2009-10 季到 2020-21 季连续 12 个作物季收集了关于在 Ludhiana 区小麦科的植物育种和遗传学系收集了关于 Karnal 黑粉病发生的信息;在 Bathinda 区,从 2010-11 季到 2018-19 季连续 9 个作物季收集了关于 Karnal 黑粉病发生的信息。该研究旨在使用气象数据调查不同时间段(2 月、3 月、2 月 15 日至 3 月 15 日和总时间段)的各种机器学习方法对 Karnal 黑粉病预测的充分性,这些数据来自 Ludhiana 的旁遮普农业大学(PAU)气候变化和农业气象学系。最有趣的结果是,对于每个时期,不同的疾病预测模型都表现良好。随机森林回归(RF)适用于 2 月,支持向量回归(SVR)适用于 3 月,SVR 和 BLASSO 适用于 2 月 15 日至 3 月 15 日期间,随机森林适用于整个时期,其性能优于其他模型。通过比较各种指标,如均方根误差(RMSE)、根相对均方误差(RRSE)、相关系数(r)、相对平均绝对误差(MAE)、修正 D 指数和修正 NSE,创建了泰勒图来评估复杂模型的有效性。这允许对这些模型的性能进行全面评估。